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Python SDK for Tepilora API v3

Project description

Tepilora SDK (Python)

Python SDK (sync + async) for Tepilora API v3.

236 operations across 25 namespaces, auto-generated from the registry.

Install

pip install Tepilora

Optional extras:

pip install 'Tepilora[arrow]'   # PyArrow for binary formats
pip install 'Tepilora[polars]'  # Polars DataFrame support

Quick Start

import Tepilora as T

client = T.TepiloraClient(api_key="YOUR_KEY")

# Typed endpoints (IDE autocomplete)
securities = client.securities.search(query="MSCI ETF", limit=10)
print(securities["totalCount"])

# Raw call
resp = client.call("securities.search", params={"query": "MSCI", "limit": 5})
print(resp.data)

Async

import asyncio
import Tepilora as T

async def main():
    async with T.AsyncTepiloraClient(api_key="YOUR_KEY") as client:
        data = await client.securities.search(query="MSCI", limit=10)
        print(data)

asyncio.run(main())

Namespaces

Namespace Operations Description
securities 12 Search, filter, history, facets, MiFID, fees
news 7 Search, latest, trending, details
publications 5 Research reports and publications
portfolio 19 CRUD, returns, attribution, optimization
analytics 68 Rolling metrics, ratios, risk, factors
alerts 9 Alert rules CRUD, evaluate, history
macro 6 Economic indicators, calendar
stocks 9 Technicals, screening, peers, signals
bonds 7 Analyze, screen, ladder, curve, spread
options 6 Pricing, Greeks, IV, strategies
esg 5 ESG scores, screening, comparison
factors 3 Fama-French, momentum, factor loading
fh 7 Fundamentals history, financials
clients 8 B2B client management
profiling 10 MiFID questionnaires, suitability
billing 10 Fee calculations, schedules, records
documents 4 Document parsing, classification
alternatives 9 Alternative investments
queries 8 Saved queries CRUD, execute
search 1 Global search
data 1 Raw data access
exports 2 Data export to file formats

Examples by Namespace

Securities

# Search
results = client.securities.search(query="MSCI World", limit=20)

# Get details
details = client.securities.description(identifier="IE00B4L5Y983EURXMIL")

# Price history
history = client.securities.history(
    identifiers=["IE00B4L5Y983EURXMIL", "FR0010655712EURXPAR"],
    start_date="2024-01-01",
    limit=1000
)

# Filter by criteria
filtered = client.securities.filter(filters={"Currency": "EUR", "TepiloraType": "ETF"})

# Get facets for building filters
facets = client.securities.facets(fields=["Currency", "TepiloraType", "Country"])

Portfolio

# Create portfolio
portfolio = client.portfolio.create(
    name="My Portfolio",
    input_type="fixed_weights",
    input_data={"IE00B4L5Y983EURXMIL": 0.6, "FR0010655712EURXPAR": 0.4}
)

# Get returns
returns = client.portfolio.returns(
    id=portfolio["id"],
    start_date="2024-01-01",
    return_method="twr"
)

# Performance attribution
attribution = client.portfolio.attribution(id=portfolio["id"])

# Optimize
optimized = client.portfolio.optimize(
    id=portfolio["id"],
    objective="max_sharpe",
    constraints={"max_weight": 0.3}
)

Analytics

# List available functions
functions = client.analytics.list()

# Get function help
help_info = client.analytics.help("rolling_volatility")

# Calculate rolling volatility
vol = client.analytics.rolling_volatility(
    identifiers="IE00B4L5Y983EURXMIL",
    period=252,
    start_date="2023-01-01"
)

# Rolling Sharpe ratio
sharpe = client.analytics.rolling_sharpe(
    identifiers="IE00B4L5Y983EURXMIL",
    period=252,
    rf=0.02
)

# Factor regression
factors = client.analytics.factor_regression(
    identifiers="IE00B4L5Y983EURXMIL",
    model="FF5"
)

News & Publications

# Search news
news = client.news.search(query="bitcoin", limit=20)

# Latest news
latest = client.news.latest(limit=10)

# Trending topics
trending = client.news.trending(limit=50, finance_only=True)

# Search publications
pubs = client.publications.search(query="market outlook", limit=10)

Alerts

# Create alert
alert = client.alerts.create(
    name="Price Alert",
    condition={"type": "price_change", "threshold": 5.0},
    action={"type": "webhook", "url": "https://..."}
)

# List alerts
alerts = client.alerts.list(enabled=True)

# Evaluate manually
result = client.alerts.evaluate(rule_id=alert["id"])

Bonds

# Analyze bond
analysis = client.bonds.analyze(
    identifier="XS1234567890",
    price=98.5,
    settlement_date="2024-02-01"
)

# Screen bonds
bonds = client.bonds.screen(
    criteria={"min_yield": 4.0, "max_duration": 5.0},
    limit=50
)

# Get yield curve
curve = client.bonds.curve(currency="EUR", date="2024-01-15")

Arrow/Binary Formats

from Tepilora.arrow import read_ipc_stream

# Request Arrow format
resp = client.call_arrow_ipc_stream("securities.search", params={"query": "ETF", "limit": 1000})
table = read_ipc_stream(resp.content)
print(table.to_pandas())

Module-Level API

import Tepilora as T

# Configure globally
T.configure(api_key="YOUR_KEY")

# Use without client instance
T.analytics.rolling_volatility(identifiers="IE00B4L5Y983EURXMIL")

Or via environment variables:

export TEPILORA_API_KEY=your_key
export TEPILORA_BASE_URL=https://tepiloradata.com

Error Handling

from Tepilora.errors import TepiloraAPIError

try:
    data = client.securities.search(query="invalid")
except TepiloraAPIError as e:
    print(f"Error: {e.message}")
    print(f"Code: {e.status_code}")

API Endpoints

  • POST /T-Api/v3 - Unified action router (all operations)
  • GET /T-Api/v3/health - Health check
  • GET /T-Api/v3/pricing - Pricing info
  • GET /T-Api/v3/logs/status - Logs status

Version

import Tepilora
print(Tepilora.__version__)  # 0.3.2

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